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Transcript
Future Wireless Networks
Ubiquitous Communication Among People and Devices
Next-generation Cellular
Wireless Internet Access
Wireless Multimedia
Sensor Networks
Smart Homes/Spaces
Automated Highways
In-Body Networks
All this and more …
Design Challenges

Wireless channels are a difficult and capacitylimited broadcast communications medium

Traffic patterns, user locations, and network
conditions are constantly changing

Applications are heterogeneous with hard
constraints that must be met by the network

Energy and delay constraints change design
principles across all layers of the protocol stack
Wireless Network Design Issues

Multiuser Communications

Multiple and Random Access

Cellular System Design

Ad-Hoc Network Design

Network Layer Issues

Application Support and Cross-Layer Design
Multiuser Channels:
Uplink and Downlink
Uplink (Multiple Access
Channel or MAC):
Many Transmitters
to One Receiver.
Downlink (Broadcast
Channel or BC):
One Transmitter
to Many Receivers.
R3
x
h3(t)
x
h22(t)
x
x
h1(t)
h21(t)
R2
R1
Uplink and Downlink typically duplexed in time or frequency
Bandwidth Sharing
Code Space


Frequency Division
Time Division
Time
Code Space
Frequency
Time
Frequency

Code Division

Time
Multiuser Detection
Frequency

Space (MIMO Systems)

Hybrid Schemes
7C29822.033-Cimini-9/97
Code Space
Multiuser Detection
-
Signal 1
=
Signal 1
Demod
Signal 2
Signal 2
Demod
-
=
Code properties of CDMA allow the signal separation and subtraction
RANDOM ACCESS TECHNIQUES
Random Access

Dedicated channels wasteful for data


use statistical multiplexing
Techniques


Aloha
Carrier sensing





Reservation protocols
PRMA
Retransmissions used for corrupted data
Poor throughput and delay characteristics under
heavy loading

7C29822.038-Cimini-9/97
Collision detection or avoidance
Hybrid methods
Scarce Wireless Spectrum
$$$
and Expensive
Spectral Reuse
Due to its scarcity, spectrum is reused
In licensed bands
and unlicensed bands
BS
Cellular, Wimax
Wifi, BT, UWB,…
Reuse introduces interference
Interference: Friend or Foe?

If treated as noise: Foe
P
SNR 
NI
Increases BER
Reduces capacity

If decodable (MUD): Neither friend nor foe

If exploited via cooperation and cognition:
Friend (especially in a network setting)
Cellular Systems
Reuse channels to maximize capacity

1G: Analog systems, large frequency reuse, large cells, uniform standard

2G: Digital systems, less reuse (1 for CDMA), smaller cells, multiple
standards, evolved to support voice and data (IS-54, IS-95, GSM)

3G: Digital systems, WCDMA competing with GSM evolution.

4G: OFDM/MIMO
BASE
STATION
MTSO
MIMO in Cellular:
Performance Benefits

Antenna gain  extended battery life,
extended range, and higher throughput

Diversity gain  improved reliability, more
robust operation of services

Multiplexing gain  higher data rates

Interference suppression (TXBF) 
improved quality, reliability, robustness

Reduced interference to other systems
Cooperative/Network MIMO


How should MIMO be fully exploited?
At a base station or Wifi access point


MIMO Broadcasting and Multiple Access
Network MIMO: Form virtual antenna arrays



Downlink is a MIMO BC, uplink is a MIMO MAC
Can treat “interference” as a known signal or noise
Can cluster cells and cooperate between clusters
Ad-Hoc/Mesh Networks
Outdoor Mesh
ce
Indoor Mesh
Cooperation in Ad-Hoc Networks

Many possible cooperation strategies:


Virtual MIMO , generalized relaying, interference
forwarding, and one-shot/iterative conferencing
Many theoretical and practice issues:

Overhead, forming groups, dynamics, synch, …
Intelligence beyond Cooperation:
Cognition

Cognitive radios can support new wireless users in
existing crowded spectrum


Utilize advanced communication and signal
processing techniques


Without degrading performance of existing users
Coupled with novel spectrum allocation policies
Technology could


Revolutionize the way spectrum is allocated worldwide
Provide sufficient bandwidth to support higher quality
and higher data rate products and services
Cognitive Radio Paradigms

Underlay
 Cognitive
radios constrained to cause minimal
interference to noncognitive radios

Interweave
 Cognitive
radios find and exploit spectral holes
to avoid interfering with noncognitive radios

Overlay
 Cognitive
radios overhear and enhance
noncognitive radio transmissions
Knowledge
and
Complexity
Underlay Systems

Cognitive radios determine the interference their
transmission causes to noncognitive nodes

Transmit if interference below a given threshold
IP
NCR
NCR

CR
CR
The interference constraint may be met


Via wideband signalling to maintain interference
below the noise floor (spread spectrum or UWB)
Via multiple antennas and beamforming
Interweave Systems

Measurements indicate that even crowded spectrum
is not used across all time, space, and frequencies


Original motivation for “cognitive” radios (Mitola’00)
These holes can be used for communication



Interweave CRs periodically monitor spectrum for holes
Hole location must be agreed upon between TX and RX
Hole is then used for opportunistic communication with
minimal interference to noncognitive users
Overlay Systems

Cognitive user has knowledge of other
user’s message and/or encoding strategy
 Used
to help noncognitive transmission
 Used to presubtract noncognitive interference
CR
NCR
RX1
RX2
Wireless Sensor and “Green” Networks
•
•
•
•
•
•





Smart homes/buildings
Smart structures
Search and rescue
Homeland security
Event detection
Battlefield surveillance
Energy (transmit and processing) is driving constraint
Data flows to centralized location (joint compression)
Low per-node rates but tens to thousands of nodes
Intelligence is in the network rather than in the devices
Similar ideas can be used to re-architect systems and networks to be green
Energy-Constrained Nodes

Each node can only send a finite number of bits.




Short-range networks must consider transmit,
circuit, and processing energy.



Transmit energy minimized by maximizing bit time
Circuit energy consumption increases with bit time
Introduces a delay versus energy tradeoff for each bit
Sophisticated techniques not necessarily energy-efficient.
Sleep modes save energy but complicate networking.
Changes everything about the network design:



Bit allocation must be optimized across all protocols.
Delay vs. throughput vs. node/network lifetime tradeoffs.
Optimization of node cooperation.
Crosslayer Design in
Wireless Networks

Application

Network

Access

Link

Hardware
Tradeoffs at all layers of the protocol stack are
optimized with respect to end-to-end performance
This performance is dictated by the application
Example: Image/video transmission
over a MIMO multihop network
•Antennas can be used for multiplexing, diversity, or
interference cancellation
•M-fold possible capacity increase via multiplexing
•M2 possible diversity gain
•Can cancel M-1 interferers
•Errors occur due to fading, interference, and delay
• What metric should be optimized? Image “quality”